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Towards User-Independent DTI Quantification

机译:走向独立于用户的DTI量化

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摘要

Quantification of diffusion tensor imaging (DTI) parameters has become an important role in the neuroimaging, neurosurgical, and neurological community as a method to identify major white matter tracts afflicted by pathology or tracts at risk for a given surgical approach. We introduce a novel framework for a reliable and robust quantification of DTI parameters, which overcomes problems of existing techniques introduced by necessary user inputs. In a first step, a hybrid clustering method is proposed that allows for extracting specific fiber bundles in a robust way. Compared to previous methods, our approach considers only local proximities of fibers and is insensitive to their global geometry. This is very useful in cases where a fiber tracking of the whole brain is not available. Our technique determines the overall number of clusters iteratively using a eigenvalue thresholding technique to detect disjoint clusters of independent fiber bundles. Afterwards, possible finer substructures based on an eigenvalue regression are determined within each bundle. In a second step, a quantification of DTI parameters of the extracted bundle is performed. We propose a method that automatically determines a 3D image where the voxel values encode the minimum distance to a reconstructed fiber. This image allows for calculating a 3D mask where each voxel within the mask corresponds to a voxel that lies in an isosurface around the fibers. The mask is used for an automatic classification between tissue classes (fiber, background, and partial volume) so that the quantification can be performed on one or more of such classes. This can be done per slice or a single DTI parameter can be determined for the whole volume which is covered by the isosurface. Our experimental tests confirm that major white matter fiber tracts may be robustly determined and can be quantified automatically. A great advantage of our framework is its easy integration into existing quantification applications so that uncertainties can be reduced, and higher intrarater- as well as interrater reliabilities can be achieved.
机译:扩散张量成像(DTI)参数的量化已成为神经影像,神经外科和神经病学界的重要角色,作为一种方法可以识别出主要的白质区,这些白质区受病理影响或存在给定手术方法的风险。我们介绍了一种可靠而强大的DTI参数量化的新颖框架,它克服了必要的用户输入所引入的现有技术的问题。在第一步中,提出了一种混合聚类方法,该方法允许以鲁棒的方式提取特定的光纤束。与以前的方法相比,我们的方法仅考虑纤维的局部位置,并且对它们的整体几何形状不敏感。这在无法跟踪整个大脑的情况下非常有用。我们的技术使用特征值阈值技术迭代地确定簇的总数,以检测独立纤维束的不相交簇。之后,在每个束中确定基于特征值回归的可能更精细的子结构。在第二步骤中,对提取的束的DTI参数进行量化。我们提出一种自动确定3D图像的方法,其中体素值编码到重建光纤的最小距离。此图像允许计算3D蒙版,其中蒙版中的每个体素对应于位于纤维周围等值面中的体素。面罩用于组织类别(纤维,背景和部分体积)之间的自动分类,因此可以对一个或多个此类类别进行定量。可以针对每个切片进行此操作,也可以为等值面所覆盖的整个体积确定单个DTI参数。我们的实验测试证实,主要的白质纤维束可以被可靠地确定并可以自动定量。我们框架的一大优势是可以轻松集成到现有的定量应用程序中,从而可以减少不确定性,并可以实现更高的内部评估者和跨界者可靠性。

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